motion estimation
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MotionTTT: 2D Test-Time-Training Motion Estimation for 3D Motion Corrected MRI
A major challenge of the long measurement times in magnetic resonance imaging (MRI), an important medical imaging technology, is that patients may move during data acquisition. This leads to severe motion artifacts in the reconstructed images and volumes. In this paper, we propose MotionTTT a deep learning-based test-time-training (TTT) method for accurate motion estimation. The key idea is that a neural network trained for motion-free reconstruction has a small loss if there is no motion, thus optimizing over motion parameters passed through the reconstruction network enables accurate estimation of motion. The estimated motion parameters enable to correct for the motion and to reconstruct accurate motion-corrected images. Our method uses 2D reconstruction networks to estimate rigid motion in 3D, and constitutes the first deep learning based method for 3D rigid motion estimation towards 3D-motion-corrected MRI. We show that our method can provably reconstruct motion parameters for a simple signal and neural network model. We demonstrate the effectiveness of our method for both retrospectively simulated motion and prospectively collected real motion-corrupted data.
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Estimation of Segmental Longitudinal Strain in Transesophageal Echocardiography by Deep Learning
Taskén, Anders Austlid, Judge, Thierry, Berg, Erik Andreas Rye, Yu, Jinyang, Grenne, Bjørnar, Lindseth, Frank, Aakhus, Svend, Jodoin, Pierre-Marc, Duchateau, Nicolas, Bernard, Olivier, Kiss, Gabriel
Segmental longitudinal strain (SLS) of the left ventricle (LV) is an important prognostic indicator for evaluating regional LV dysfunction, in particular for diagnosing and managing myocardial ischemia. Current techniques for strain estimation require significant manual intervention and expertise, limiting their efficiency and making them too resource-intensive for monitoring purposes. This study introduces the first automated pipeline, autoStrain, for SLS estimation in transesophageal echocardiography (TEE) using deep learning (DL) methods for motion estimation. We present a comparative analysis of two DL approaches: TeeFlow, based on the RAFT optical flow model for dense frame-to-frame predictions, and TeeTracker, based on the CoTracker point trajectory model for sparse long-sequence predictions. As ground truth motion data from real echocardiographic sequences are hardly accessible, we took advantage of a unique simulation pipeline (SIMUS) to generate a highly realistic synthetic TEE (synTEE) dataset of 80 patients with ground truth myocardial motion to train and evaluate both models. Our evaluation shows that TeeTracker outperforms TeeFlow in accuracy, achieving a mean distance error in motion estimation of 0.65 mm on a synTEE test dataset. Clinical validation on 16 patients further demonstrated that SLS estimation with our autoStrain pipeline aligned with clinical references, achieving a mean difference (95\% limits of agreement) of 1.09% (-8.90% to 11.09%). Incorporation of simulated ischemia in the synTEE data improved the accuracy of the models in quantifying abnormal deformation. Our findings indicate that integrating AI-driven motion estimation with TEE can significantly enhance the precision and efficiency of cardiac function assessment in clinical settings.
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Supplementary Materials: Leveraging Vision-Centric Multi-Modal Expertise for 3D Object Detection Anonymous Author(s) Affiliation Address email
Moreover, we provide additional visualizations in Section C. Lastly, we explore the potential social The setting of adopted expert-apprentice pairs is depicted in Tab. 1. Let's consider a moving object and analyze the impact of inaccurate motion estimation on its We will provide further details in the subsequent discussion. We hypothesize that this decrease may be attributed to the model's distracted attention BEVDepth: Acquisition of reliable depth for multi-view 3d object detection.